Abstract

Automatic identification of human interaction is a challenging task especially in dynamic environments with cluttered backgrounds from video sequences. Advancements in computer vision sensor technologies provide powerful effects in human interaction recognition (HIR) during routine daily life. In this paper, we propose a novel features extraction method which incorporates robust entropy optimization and an efficient Maximum Entropy Markov Model (MEMM) for HIR via multiple vision sensors. The main objectives of proposed methodology are: (1) to propose a hybrid of four novel features—i.e., spatio-temporal features, energy-based features, shape based angular and geometric features—and a motion-orthogonal histogram of oriented gradient (MO-HOG); (2) to encode hybrid feature descriptors using a codebook, a Gaussian mixture model (GMM) and fisher encoding; (3) to optimize the encoded feature using a cross entropy optimization function; (4) to apply a MEMM classification algorithm to examine empirical expectations and highest entropy, which measure pattern variances to achieve outperformed HIR accuracy results. Our system is tested over three well-known datasets: SBU Kinect interaction; UoL 3D social activity; UT-interaction datasets. Through wide experimentations, the proposed features extraction algorithm, along with cross entropy optimization, has achieved the average accuracy rate of 91.25% with SBU, 90.4% with UoL and 87.4% with UT-Interaction datasets. The proposed HIR system will be applicable to a wide variety of man–machine interfaces, such as public-place surveillance, future medical applications, virtual reality, fitness exercises and 3D interactive gaming.

Highlights

  • Human interaction recognition (HIR) deals with the understanding of communication taking place between a human and an object or other persons [1]

  • Motivated by the applications of HIR systems in daily life, we proposed a robust system which is able to track human interactions and which is easy to deploy in real world applications [16]

  • We propose a novel hybrid HIR system and entropy Markov model that examines the daily interactions of humans

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Summary

Introduction

Human interaction recognition (HIR) deals with the understanding of communication taking place between a human and an object or other persons [1]. In many situations, personal human observation of some actions is impractical due to the cost of resources and to hazardous environments. In the case of smart rehabilitation, it is more suitable for a machine to monitor a patient’s daily routine rather than for a human to constantly observe a patient (24/7) [2]. In the case of video surveillance, it is more appropriate to monitor human actions via sensor devices, especially in places where risk factors and suspicious activities are involved

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